Chest x-ray automated triage: a semiologic approach designed for
clinical implementation, exploiting different types of labels through a
combination of four Deep Learning architectures
- URL: http://arxiv.org/abs/2012.12712v1
- Date: Wed, 23 Dec 2020 14:38:35 GMT
- Title: Chest x-ray automated triage: a semiologic approach designed for
clinical implementation, exploiting different types of labels through a
combination of four Deep Learning architectures
- Authors: Candelaria Mosquera (1 and 2), Facundo Nahuel Diaz (3), Fernando
Binder (1), Jose Martin Rabellino (3), Sonia Elizabeth Benitez (1), Alejandro
Daniel Beres\~nak (3), Alberto Seehaus (3), Gabriel Ducrey (3), Jorge Alberto
Ocantos (3) and Daniel Roberto Luna (1) ((1) Health Informatics Department
Hospital Italiano de Buenos Aires,(2) Universidad Tecnologica Nacional,(3)
Radiology Department Hospital Italiano de Buenos Aires)
- Abstract summary: This work presents a Deep Learning method based on the late fusion of different convolutional architectures.
We built four training datasets combining images from public chest x-ray datasets and our institutional archive.
We trained four different Deep Learning architectures and combined their outputs with a late fusion strategy, obtaining a unified tool.
- Score: 83.48996461770017
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: BACKGROUND AND OBJECTIVES: The multiple chest x-ray datasets released in the
last years have ground-truth labels intended for different computer vision
tasks, suggesting that performance in automated chest-xray interpretation might
improve by using a method that can exploit diverse types of annotations. This
work presents a Deep Learning method based on the late fusion of different
convolutional architectures, that allows training with heterogeneous data with
a simple implementation, and evaluates its performance on independent test
data. We focused on obtaining a clinically useful tool that could be
successfully integrated into a hospital workflow. MATERIALS AND METHODS: Based
on expert opinion, we selected four target chest x-ray findings, namely lung
opacities, fractures, pneumothorax and pleural effusion. For each finding we
defined the most adequate type of ground-truth label, and built four training
datasets combining images from public chest x-ray datasets and our
institutional archive. We trained four different Deep Learning architectures
and combined their outputs with a late fusion strategy, obtaining a unified
tool. Performance was measured on two test datasets: an external
openly-available dataset, and a retrospective institutional dataset, to
estimate performance on local population. RESULTS: The external and local test
sets had 4376 and 1064 images, respectively, for which the model showed an area
under the Receiver Operating Characteristics curve of 0.75 (95%CI: 0.74-0.76)
and 0.87 (95%CI: 0.86-0.89) in the detection of abnormal chest x-rays. For the
local population, a sensitivity of 86% (95%CI: 84-90), and a specificity of 88%
(95%CI: 86-90) were obtained, with no significant differences between
demographic subgroups. We present examples of heatmaps to show the accomplished
level of interpretability, examining true and false positives.
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